Autograd can automatically differentiate native Python and Numpy code. It can handle a large subset of Python's features, including loops, ifs, recursion and closures, and it can even take derivatives of derivatives of derivatives. It supports reverse-mode differentiation (a.k.a. backpropagation), which means it can efficiently take gradients of scalar-valued functions with respect to array-valued arguments, as well as forward-mode differentiation, and the two can be composed arbitrarily. The main intended application of Autograd is gradient-based optimization. For more information, check out the tutorial and the examples directory. We can continue to differentiate as many times as we like, and use numpy's vectorization of scalar-valued functions across many different input values.

Features

  • Simple neural net
  • Convolutional neural net
  • Recurrent neural net
  • LSTM
  • Neural Turing Machine
  • Backpropagating through a fluid simulation

Project Samples

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License

MIT License

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Additional Project Details

Programming Language

Python

Related Categories

Python Source Code Analysis Tool

Registered

2021-10-12